脑肿瘤患者磁共振成像的弱监督颅骨剥离术

Frontiers in neuroimaging Pub Date : 2022-04-25 eCollection Date: 2022-01-01 DOI:10.3389/fnimg.2022.832512
Sara Ranjbar, Kyle W Singleton, Lee Curtin, Cassandra R Rickertsen, Lisa E Paulson, Leland S Hu, Joseph Ross Mitchell, Kristin R Swanson
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引用次数: 0

摘要

在磁共振成像(MRI)中,脑肿瘤等明显病变通常会导致脑组织的大位移、异常外观和变形,因此自动脑肿瘤分割尤其具有挑战性。尽管之前有大量文献介绍了基于学习的磁共振成像分割方法,但很少有作品专注于解决脑肿瘤患者数据的磁共振成像头骨剥离问题。文献中的这一空白可能与缺乏公开数据(出于对患者身份识别的考虑)以及为模型训练生成地面实况标签的劳动密集型性质有关。在这项回顾性研究中,我们在大型多机构脑肿瘤患者数据集上评估了 Dense-Vnet 在颅骨剥离脑肿瘤患者磁共振成像中的性能。我们的数据包括经内部机构审查委员会批准的多机构脑肿瘤资料库中 668 名患者的预处理 MRI。由于缺乏基本事实,我们使用 SPM12 软件自动生成了不完善的训练标签。我们使用肿瘤学中常见的 MRI 序列对网络进行了训练:T1加权钆对比、T2加权流体增强反转恢复或两者兼而有之。我们用 30 个独立的脑肿瘤测试病例和可用的手动脑掩膜测量了模型的性能。在模型训练之前,所有图像的体素间距和容积尺寸都已统一。模型训练使用模块化结构的深度学习平台 NiftyNet 进行,该平台专门用于简化医学图像分析。我们提出的方法表明,即使在存在病理的情况下,弱监督深度学习方法在磁共振成像脑提取中也能取得成功。在多机构独立脑肿瘤测试集上,我们的最佳模型获得了平均 94.5%、96.4% 和 98.5%的 Dice 分数、灵敏度和特异性。为了进一步将我们的结果与现有的健康大脑分割文献结合起来,我们用基准 LBPA40 数据集中的健康受试者对模型进行了测试。在该数据集上,模型的平均 Dice 得分、灵敏度和特异性分别为 96.2%、96.6% 和 99.2%,虽然与其他文献不相上下,但略低于在健康患者身上训练的模型的性能。我们将这种性能下降与使用脑肿瘤数据进行模型训练及其对大脑外观的影响联系起来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Weakly Supervised Skull Stripping of Magnetic Resonance Imaging of Brain Tumor Patients.

Weakly Supervised Skull Stripping of Magnetic Resonance Imaging of Brain Tumor Patients.

Weakly Supervised Skull Stripping of Magnetic Resonance Imaging of Brain Tumor Patients.

Weakly Supervised Skull Stripping of Magnetic Resonance Imaging of Brain Tumor Patients.

Automatic brain tumor segmentation is particularly challenging on magnetic resonance imaging (MRI) with marked pathologies, such as brain tumors, which usually cause large displacement, abnormal appearance, and deformation of brain tissue. Despite an abundance of previous literature on learning-based methodologies for MRI segmentation, few works have focused on tackling MRI skull stripping of brain tumor patient data. This gap in literature can be associated with the lack of publicly available data (due to concerns about patient identification) and the labor-intensive nature of generating ground truth labels for model training. In this retrospective study, we assessed the performance of Dense-Vnet in skull stripping brain tumor patient MRI trained on our large multi-institutional brain tumor patient dataset. Our data included pretreatment MRI of 668 patients from our in-house institutional review board-approved multi-institutional brain tumor repository. Because of the absence of ground truth, we used imperfect automatically generated training labels using SPM12 software. We trained the network using common MRI sequences in oncology: T1-weighted with gadolinium contrast, T2-weighted fluid-attenuated inversion recovery, or both. We measured model performance against 30 independent brain tumor test cases with available manual brain masks. All images were harmonized for voxel spacing and volumetric dimensions before model training. Model training was performed using the modularly structured deep learning platform NiftyNet that is tailored toward simplifying medical image analysis. Our proposed approach showed the success of a weakly supervised deep learning approach in MRI brain extraction even in the presence of pathology. Our best model achieved an average Dice score, sensitivity, and specificity of, respectively, 94.5, 96.4, and 98.5% on the multi-institutional independent brain tumor test set. To further contextualize our results within existing literature on healthy brain segmentation, we tested the model against healthy subjects from the benchmark LBPA40 dataset. For this dataset, the model achieved an average Dice score, sensitivity, and specificity of 96.2, 96.6, and 99.2%, which are, although comparable to other publications, slightly lower than the performance of models trained on healthy patients. We associate this drop in performance with the use of brain tumor data for model training and its influence on brain appearance.

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